数据长度对人工智能模型预测空气污染性能的影响

IF 2.1 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
M. Alomar, Faidhalrahman Khaleel, Abdulwahab Abdulrazaaq AlSaadi, Mohammed Majeed Hameed, M. Alsaadi, N. Al‐Ansari
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引用次数: 4

摘要

空气污染是人类最关键的环境问题之一,在世界上几个国家都被认为是有争议的。因此,准确的预测对人类健康管理和政府环境管理决策至关重要。本研究采用数据处理神经网络(GMDHNN)、极限学习机(ELM)和梯度增强回归(GBR)树三种人工智能(AI)方法预测了加拿大多塞特站PM2.5的小时浓度。本研究旨在量化数据长度对人工智能建模性能的影响。因此,采用9种不同的比率(50/50、55/45、60/40、65/35、70/30、75/25、80/20、85/15和90/10)将数据分割为训练和测试数据集,以评估应用模型的性能。结果表明,数据分割对模型的容量有显著影响,60/40的比例更适合建立预测模型。此外,结果表明,ELM模型比其他模型提供了更精确的PM2.5浓度预测。此外,ELM模型的一个重要特征是它能够适应训练和测试数据比率的潜在变化。综上所述,本研究报告的结果展示了一种选择最佳数据集比率和最佳人工智能模型进行正确预测的有效方法,这将有助于设计准确的模型来解决不同的环境问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Influence of Data Length on the Performance of Artificial Intelligence Models in Predicting Air Pollution
Air pollution is one of humanity's most critical environmental issues and is considered contentious in several countries worldwide. As a result, accurate prediction is critical in human health management and government decision-making for environmental management. In this study, three artificial intelligence (AI) approaches, namely group method of data handling neural network (GMDHNN), extreme learning machine (ELM), and gradient boosting regression (GBR) tree, are used to predict the hourly concentration of PM2.5 over a Dorset station located in Canada. The investigation has been performed to quantify the effect of data length on the AI modeling performance. Accordingly, nine different ratios (50/50, 55/45, 60/40, 65/35, 70/30, 75/25, 80/20, 85/15, and 90/10) are employed to split the data into training and testing datasets for assessing the performance of applied models. The results showed that the data division significantly impacted the model's capacity, and the 60/40 ratio was found more suitable for developing predictive models. Furthermore, the results showed that the ELM model provides more precise predictions of PM2.5 concentrations than the other models. Also, a vital feature of the ELM model is its ability to adapt to the potential changes in training and testing data ratio. To summarize, the results reported in this study demonstrated an efficient method for selecting the optimal dataset ratios and the best AI model to predict properly which would be helpful in the design of an accurate model for solving different environmental issues.
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来源期刊
Advances in Meteorology
Advances in Meteorology 地学天文-气象与大气科学
CiteScore
5.30
自引率
3.40%
发文量
80
审稿时长
>12 weeks
期刊介绍: Advances in Meteorology is a peer-reviewed, Open Access journal that publishes original research articles as well as review articles in all areas of meteorology and climatology. Topics covered include, but are not limited to, forecasting techniques and applications, meteorological modeling, data analysis, atmospheric chemistry and physics, climate change, satellite meteorology, marine meteorology, and forest meteorology.
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